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Development and validation of machine learning models to predict frailty risk for elderly.
Zhang, Wei; Wang, Junchao; Xie, Fang; Wang, Xinghui; Dong, Shanshan; Luo, Nan; Li, Feng; Li, Yuewei.
Afiliação
  • Zhang W; First Affiliated Hospital of Kunming Medical University, Kunming, China.
  • Wang J; China-Japan Union Hospital of Jilin University, Changchun, China.
  • Xie F; Zhejiang University School of Medicine, Hangzhou, China.
  • Wang X; School of Nursing, Jilin University, Changchun, China.
  • Dong S; Hepatopancreatobiliary Surgery Department, General External Center, First Hospital of Jilin University, Changchun, China.
  • Luo N; The Second Hospital of Jilin University, Changchun, China.
  • Li F; School of Nursing, Jilin University, Changchun, China.
  • Li Y; School of Nursing, Jilin University, Changchun, China.
J Adv Nurs ; 2024 Apr 11.
Article em En | MEDLINE | ID: mdl-38605460
ABSTRACT

AIMS:

Early identification and intervention of the frailty of the elderly will help lighten the burden of social medical care and improve the quality of life of the elderly. Therefore, we used machine learning (ML) algorithm to develop models to predict frailty risk in the elderly.

DESIGN:

A prospective cohort study.

METHODS:

We collected data on 6997 elderly people from Chinese Longitudinal Healthy Longevity Study wave 6-7 surveys (2011-2012, 2014). After the baseline survey in 1998 (wave 1), the project conducted follow-up surveys (wave 2-8) in 2000-2018. The osteoporotic fractures index was used to assess frailty. Four ML algorithms (random forest [RF], support vector machine, XGBoost and logistic regression [LR]) were used to develop models to identify the risk factors of frailty and predict the risk of frailty. Different ML models were used for the prediction of frailty risk in the elderly and frailty risk was trained on a cohort of 4385 elderly people with frailty (split into a training cohort [75%] and internal validation cohort [25%]). The best-performing model for each study outcome was tested in an external validation cohort of 6997 elderly people with frailty pooled from the surveys (wave 6-7). Model performance was assessed by receiver operating curve and F2-score.

RESULTS:

Among the four ML models, the F2-score values were similar (0.91 vs. 0.91 vs. 0.88 vs. 0.90), and the area under the curve (AUC) values of RF model was the highest (0.75), followed by LR model (0.74). In the final two models, the AUC values of RF and LR model were similar (0.77 vs. 0.76) and their accuracy was identical (87.4% vs. 87.4%).

CONCLUSION:

Our study developed a preliminary prediction model based on two different ML approaches to help predict frailty risk in the elderly. IMPACT The presented models from this study can be used to inform healthcare providers to predict the frailty probability among older adults and maybe help guide the development of effective frailty risk management interventions. IMPLICATIONS FOR THE PROFESSION AND/OR PATIENT CARE Detecting frailty at an early stage and implementing timely targeted interventions may help to improve the allocation of health care resources and to reduce frailty-related burden. Identifying risk factors for frailty could be beneficial to provide tailored and personalized care intervention for older adults to more accurately prevent or improve their frail conditions so as to improve their quality of life. REPORTING

METHOD:

The study has adhered to STROBE guidelines. PATIENT OR PUBLIC CONTRIBUTION No patient or public contribution.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: J Adv Nurs Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: J Adv Nurs Ano de publicação: 2024 Tipo de documento: Article